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Backchannel, Training and Co-Optimization BIRD Introduction and Flows Walter Katz Signal Integrity Software, Inc. IBIS-ATM May 13, 2014
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Overview Purpose of this Presentation Backchannel Definitions Training Makes Assumptions About Tx Silicon Tx Silicon Never Optimizes Itself How Training Really Happens Tx.ami File Enhancements Rx.ami File Enhancements Training Flow 2
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Purpose of this Presentation In order to operate optimally a SerDes channel must be configured with a Tx and Rx configuration consisting of Tx transmit taps and Rx CTLE and Rx DFE taps. The Rx silicon can automatically optimize its DFE taps and may sometime be able to optimize its CTLE. (Note the term DFE here is used generically to encompass any Rx equalization technique.) The optimal configuration can either be determined by EDA tools varying the Tx tap coefficients blindly, intelligently, or using the Rx AMI model to vary the Tx tap coefficients. The later is called Training or Backchannel. The former is called Co-Optimization. These IBIS AMI enhancements support Rx training, Rx controlled optimization and EDA tool controlled optimization. 3
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Backchannel Definitions Reading 802.3 and PCIe-3 training specification will make your head spin In PCIe-3 –A channel consist of a Tx/Rx –A Lane is a pair of Tx/Rx and Rx/Tx channels, one for transmission and one pair for reception. A by-N Link is composed of N Lanes. Training may be controlled by component software or can be done autonomously by a Lane or Link. An Rx on component A communicates to its Tx on component B using its lanes paired channel. 4
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Training Makes Assumptions About Tx Silicon Tx is has FFE equalization One pre cursor tap required (more optional) One post cursor tap required (more optional) Standard specifies presets Rx recommends changes to pre and post tap Coefficients (Tx silicon never optimizes itself) Protocol must convert Coefficient to Index changes (and must know how) Protocol may initialize channel to preset or optimized tap coefficients from simulation 5
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Three Representations of Tx Taps Hardware Registers –Hardware specific, often no simple relationship between hardware register contents and either Tap Indexes or Coefficients Tap Indexes –Integer range for each tap –Ranges typically go from 0 to 7, 15, 31 or 63 –Often different ranges for each tap Tap Coefficients –Floating point number for each tap –Sum of absolute values either 1 or Peak to Peak Voltage Training/Co-optimization deal with Indexes and Coefficients 6
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Tx Silicon Never Optimizes Itself How could it? Ability of Tx AMI_Init was designed to optimize itself based on knowing impulse response of channel. Optimizing a Tx based on IR of channel was OK at 3Gpbs, but has been proven invalid >=6Gbps The feature of Tx Init optimizing Tx taps based on the channel impulse response has complicated AMI flows considerably and unecessarily. 7
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How Training Really Happens 1.Controller sets Tx and Rx presets Based on Channel Loss, Simulation, … A.Tx Tap Indexes (or coefficients) B.Rx CTLE Index (some Rx optimize their own CTLE) 2.Controller sends PRBS pattern on Tx 3.After ~thousand(s?) of UI, Rx tells controller to change Tx taps A.PCIe – new pre and post tap coefficients B.KR – increment or decrement pre and post indexes C.Tap changes maintain peak to peak voltage 4.Controller converts Rx request to new Tx tap Indexes (or coefficients) and Rx CTLE Index 5.Controller updates Tx Taps and Rx CTLE 6.Go To 2. 8
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Can We Use Existing Tx Models? It would be helpful if only the Rx DLL needs to be changed to support training/co-optimization Idea is to add Reserved Parameters to describe the Tx to the Rx, without changing how Tx DLL operates –E.G. Do not need reserved tap names, just need a reserved parameter that points to the existing tap parameter Advanced Tx can enable optimization during time domain simulations Rx Init can do time domain training without Tx having time domain training capability 9
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Tx.ami Reserved Parameters Tx_Peak_to_Peak_Voltage_Parameter –(Type String) (Usage Info) –Model Specific Tx_Peak_to_Peak_Voltage Parameter Tx_Tap_Coefficient_Parameter –(Type String) (Usage Info)(Value “My_Tap_Coefficient”) –Model Specific Coefficient values Parameter Tx_Tap_Index_Parameter –(Type String) (Usage Info) –Model Specific Index values Parameter Tx_Tap_Increment_Parameter –(Type Tap)(Usage InOut) –Taps with Increment values Tap_Conversion –(Usage In) (Type Boolean) (List True False) –True converts Tx_Tap_Coefficients to Tx_Tap_Index –False converts Tx_Tap_Index to Tx_Tap_Coefficients
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Tx.ami Reserved Parameters(cont) Tx_Tap_Coefficient_Ranges –(Type Integer Float Float) (Usage Info) –Table with coefficient ranges for each tap Tx_Tap_Index_Ranges –(Type Integer Integer Integer ) (Usage Info) –Table with index ranges for each tap Tx_Optimization_Mode (Tx_Optimization_Mode (List “Manual” “Auto” “Co-Optimize”) (Usage In) (Type String) (Description “ Manual: Tx Equalization will be based on Tx parameter inputs AMI_Init will not alter the Tx equalization AMI_GetWave will not alter the Tx equalization Auto: Tx Equalization will be based on input impulse response AMI_GetWave will not alter the Tx equalization Co-Optimize Initial Tx equalization will be based on Tx parameter inputs AMI_Init will not alter the Tx equalization AMI_GetWave will alter the Tx equalization based on inputs”))
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Tx.ami Model Specific Parameters My_Peak_to_Peak_Voltage –(Type Tap) (Usage InOut) –Tx Peak to Peak Voltage My_Tap_Coefficient –(Type Tap) (Usage InOut) –Taps with Coefficient values –Sum of absolute values of taps = 1. My_Tap_Index –(Type Tap)(Usage InOut) –Taps with Index values My_Tap_Increment –(Type Tap)(Usage InOut) –Taps with Increment values
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Rx.ami Info Reserved Parameters Rx_Init_Optimizes_Tx Rx_GetWave_Optimizes_Tx Max_Training_Bits Pre_Amble (This is really a Link function) Training_Pattern (Just need PRBS ) Post_Amble (This is really a Link function) Rx_Tap_Coefficient_Parameter Rx_Tap_Index_Parameter Rx_Tap_Increment_Parameter Training True|False 13
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Rx.ami In and InOut Reserved Parameters InOut –Training True|False In –Tx_Tap_Coefficient_Ranges (Type Integer Float Float) (Usage Info) Table with coefficient ranges for each tap EDA tool puts Tx data here –Tx_Tap_Index_Ranges (Type Integer Integer Integer ) (Usage Info) Table with index ranges for each tap EDA tool puts Tx data here 14
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Rx.ami Model Specific Parameters InOut –This_Tx_Tap_Coefficient –This_Tx_Tap_Index –This_Tx_Tap_Increment 15
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Rx Can Support Multiple Protocols Rx_Init_Optimizes_Tx Rx_GetWave_Optimizes_Tx Max_Training_Bits Training True|False Training_Protocol (List “PCIe-G3” “802.3KR”) (PCIe-G3 –(Training_PRBS (Value 11)) (802.3KR –(Training_Pattern (Value “PRBS21”)) 16
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PCIe-3 Presets Not clear where this should be defined Table 4-3: Transmitter Preset Encoding Encoding De-emphasis (dB) Preshoot (dB) 0000b -6 0 0001b -3.5 0 0010b -4.5 0 0011b -2.5 0 0100b 0 0 (note this is no equalization!) 0101b 0 2 0110b 0 2.5 0111b -6 3.5 1000b -3.5 3.5 1001b 0 3.5 1010b See description above. See description above. 1011b through 1111b Reserved Table 4-4: Receiver Preset Hint Encoding Encoding Receiver Preset Value 000b -6 dB 001b -7 dB 010b -8 dB 011b -9 dB 100b -10 dB 101b -11 dB 110b -12 dB 111b Reserved 17
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Training Flow - Verify presets EDA tool picks presets EDA tool runs normal flow with no training to verify that channel has BER < 1.0E-5 –If not, repeat these steps to find preset with best BER 802.3bj COM (Channel Operating Margin) uses brute force technique to evaluate channel with every possible Tx tap configuration, and an ideal 14 UI Rx equalization. 18
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Init Training Flow – Tx Init Tx_Init Input –Tx_Tap_Coefficient or Tx_Tap_Index set to preset –Tap_Conversion True if Tx_Tap_Coefficient is preset False if Tx_Tap_Index is preset –Impulse Response Input is Channel Impulse Response Tx_Init Output –Tap_Conversion True Tx_Tap_Index (from input Tx_Tap_Coefficient) Tx_Tap_Coefficient (corrected from actual Index) –Tap_Conversion False Tx_Tap_Coefficient (Tx_Tap_Index is unchanged) –Channel with Preset Tx Equalization 19
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Init Training Flow – Rx Init Rx_Init Input –Tx_Tap_Coefficient –Tx_Tap_Index –Tx_Tap_Coefficient_Ranges –Tx_Tap_Index_Ranges –CTLE preset –Training True –Channel Impulse Response with Tx_Tap_Coefficient Equalization Rx_Init Output –Either Tx_Tap_Index Tx_Tap_Coefficient –CTLE –Equalized Impulse Response, including Channel Impulse Response Tx Equalization Rx Equalization 20
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Init Training Flow – Tx Init Again? After Rx Init determines optimum Tx tap coefficients, Tx Init can be called again –Tx Init can verify/correct Tx tap coefficients –Tx Init can convert Tx tap coefficients to Tx tap indexes –Tx Init can create a new Impulse Response of Channel modified by Tx equalization Rx Init can be called again with refined equalized channel, and Rx Init can then be called upon to do normal channel analysis. EDA tool may choose to continue with training or no training GetWave time domain flow. 21
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Time Domain Training Flow – Tx GetWave Input Tx_GetWave Input –Tx_Tap_Coefficient or Tx_Tap_Index from Rx Init statistical optimization or from User/EDA tool selected Preset If Tx_Tap_Coefficient –EDA tool corrects based on Tx_Tap_Ranges –Tap_Conversion set to True If Tx_Tap_Index –EDA tool corrects based on Tx_Tap_Ranges –Tap_Conversion set to False –Stimulus Pre-amble followed by Training_Pattern 22
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Time Domain Training Flow – Tx GetWave Note that Tx_GetWave may not accept all Tap coefficients/indexes/increments, and may alter them Tx_GetWave Output –Tap_Conversion True Tx_Tap_Index Tx_Tap_Coefficient –Tap_Conversion False Tx_Tap_Coefficient –Waveform: Stimulus including Tx Equalization EDA tool convolves Waveform with Channel to form waveform input to Rx_GetWave 23
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Time Domain Training Flow – Rx GetWave Rx_GetWave Input –One or more of following Tx_Tap_Coefficient Tx_Tap_Index Tx_Tap_Increment CTLE –Training True –Waveform from previous step Rx_GetWave Output –One or more of following Tx_Tap_Index Tx_Tap_Coefficient Tx_Tap_Increment CTLE –Waveform including Rx Equalization –Training True|False True, go to Training Flow – Tx GetWave Input False, go to Training Flow - Ended 24
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Time Domain Training Flow - Ended Tx_GetWave Input –Tx Tap Coefficient, Index, or Increment from Rx If Tx_Tap_Coefficient –EDA tool corrects based on Coefficient Ranges –Tap_Conversion set to True If Tx_Tap_Index (or Incremented Index) –EDA tool corrects based on Index Ranges –Tap_Conversion set to False –Stimulus Post-amble followed by simulation stimulus 25
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Time Domain Training Flow – Ended (cont) Tx_GetWave Output –Tap_Conversion True Tx_Tap_Index Tx_Tap_Coefficient –Tap_Conversion False Tx_Tap_Coefficient –Waveform: Stimulus including Tx Equalization EDA tool convolves Waveform with Channel to form waveform input to Rx_GetWave 26
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Time Domain Training Flow Ended – Statistical Channel Analysis From the last call to Tx GetWave we have either: –Tx_Tap_Index(s) –Tx_Tap_Coefficient(s) Remember the trained configuration of Tx and Rx models. Close Tx and Rx DLLs Run Tx Init then Rx Init in the normal way, but using the remembered Tx and Rx configuration. 27
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Time Domain Training Flow Ended – Time Domain Channel Analysis Rx_GetWave Input –Training False –Waveform from previous step Rx_GetWave Output –Waveform including Rx Equalization Tx_GetWave Input –Stimulus Tx_GetWave Output –Waveform including Tx Equalization –EDA tool convolves Waveform with Channel to form waveform input to Rx_GetWave Go to Rx_GetWave Input above 28
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